`np.where`

has the semantics of a vectorized if/else (similar to Apache Spark's `when`

/`otherwise`

DataFrame method). I know that I can use `np.where`

on `pandas.Series`

, but `pandas`

often defines its own API to use instead of raw `numpy`

functions, which is usually more convenient with `pd.Series`

/`pd.DataFrame`

.

Sure enough, I found `pandas.DataFrame.where`

. However, at first glance, it has completely different semantics. I could not find a way to rewrite the most basic example of `np.where`

using pandas `where`

:

```
# df is pd.DataFrame
# how to write this using df.where?
df['C'] = np.where((df['A']<0) | (df['B']>0), df['A']+df['B'], df['A']/df['B'])
```

Am I missing something obvious? Or is pandas' `where`

intended for a completely different use case, despite same name as `np.where`

?

`cond`

and`other`

arguments, but ignore the option for these arguments to be callable.`(df.A + df.B).where((df['A']<0) | (df['B']>0), df.A/df.B)`

, right? I'll delete my question I guess.